A likelihood-free Bayesian approach for characterisation of multiple delaminations in laminated composite beams

Zijie Zeng, Yuan Feng, C. Ng, Abdul H. Sheikh
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Abstract

This paper presents a probabilistic model-based optimisation framework for localising and characterising multiple delaminations in laminated composite beams using ultrasonic guided waves (GW). A likelihood-free Bayesian method, approximate Bayesian computation by subset simulation (ABC-SS), is implemented to determine the number of delaminations and identify the unknown damage characteristics and their associated uncertainties. The ABC algorithm provides a practical way to approximate the posterior distributions of uncertain damage parameters and select the most plausible damage model for determining the number of delaminations through direct comparison of the experimentally measured and numerically simulated GW signals without assuming any likelihood functions. To overcome the expensive computational cost of traditional finite element simulations, a higher-order laminated model (HOLM) is employed to model the GW propagation behaviour in the delaminated composite beams with satisfactory accuracy and acceptable computational efficiency. Benefiting from the accurate simulation, the dataset comparison utilises the original time-domain GW signals, thereby preventing the loss of any key information from the signals for damage identification. A comprehensive series of numerical case studies are used to demonstrate the accuracy, robustness and feasibility of HOLM simulation and the proposed multiple-delamination identification framework. The practicability and accuracy of the proposed ABC framework are further validated using two experimental datasets.
用于描述层压复合梁多重分层特征的无似然贝叶斯方法
本文介绍了一种基于概率模型的优化框架,用于利用超声导波(GW)定位和表征层压复合梁中的多重分层。通过子集模拟近似贝叶斯计算(ABC-SS)这一无似然贝叶斯方法,确定了分层的数量,并识别了未知的损伤特征及其相关的不确定性。ABC 算法提供了一种近似不确定损伤参数后验分布的实用方法,通过直接比较实验测量和数值模拟的 GW 信号,选择最可信的损伤模型来确定脱层数量,而无需假设任何似然函数。为了克服传统有限元模拟计算成本高昂的问题,我们采用了高阶层状模型(HOLM)来模拟分层复合梁中的 GW 传播行为,其精度令人满意,计算效率也可以接受。得益于精确的模拟,数据集比较利用了原始时域 GW 信号,从而避免了信号中用于损伤识别的任何关键信息的丢失。通过一系列全面的数值案例研究,证明了 HOLM 仿真和建议的多重层压识别框架的准确性、稳健性和可行性。利用两个实验数据集进一步验证了所提出的 ABC 框架的实用性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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